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Different neural networks approaches for identification of obstructive sleep apnea

机译:识别阻塞性睡眠呼吸暂停的不同神经网络方法

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Obstructive sleep apnea (OSA) is one of the most common breathing-related sleep disorders affecting individuals of different age groups, genders and origins. It is characterized by short-duration of cessations in breathing during sleep due to the collapse of the upper airway. The golden standard and reliable test for the detection of OSA is conducted by specialized physicians performing a polysomnographic sleep study. However, this test is time/labor consuming, expensive and cumbersome. In this paper, a non-invasive technique employing three different artificial neural networks to analyze spectral and statistical features of the Heart Rate Variability (HRV) signal to identify OSA subjects from normal control is investigated. The artificial networks include the single perceptron network, the feedforward network with back-propagation and the probabilistic neural network. The highest performance on MIT standard data is achieved by the feedforward network with back propagation using wavelet-based frequency domain features with specificity, sensitivity, and accuracy of 90%, 100% and 96.67%, respectively.
机译:阻塞性睡眠呼吸暂停(OSA)是最常见的与呼吸有关的睡眠障碍之一,会影响不同年龄段,性别和血统的个体。它的特点是由于上呼吸道的塌陷,使睡眠中的呼吸停止时间短。检测OSA的黄金标准和可靠测试是由进行多导睡眠监测研究的专业医生进行的。然而,该测试费时/费力,昂贵且麻烦。在本文中,研究了一种非侵入性技术,该技术采用三种不同的人工神经网络来分析心率变异性(HRV)信号的频谱和统计特征,以从正常对照中识别OSA受试者。人工网络包括单个感知器网络,带有反向传播的前馈网络和概率神经网络。麻省理工学院标准数据的最高性能是通过使用基于小波的频域特征进行反向传播的前馈网络实现的,其特异性,灵敏度和准确度分别为90%,100%和96.67%。

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